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Intermediate layer optimization of HMAX model for face recognition

机译:用于人脸识别的HMAX模型的中间层优化

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In this paper, we describe a quantitative model that accounts for the circuits and computations of the feed-forward path of the ventral stream of visual cortex. This model is consistent with a general theory of visual processing that extends the hierarchical model from primary to extra-striate visual areas. We implemented the Modified HMAX method, which has learning ability from C1 to S2 layer, and in order to S2 layer features optimization, we applied two clustering methods such as K-Means and Sequential Backward feature selection. After feature extraction, we used the K-nearest neighbor (KNN) and support vector machine (SVM) as classifiers. Experimental results have shown that applying the Sequential Backward feature selection in learning stage obtain higher recognition rate. The ORL database is exploited to test our approach. The experimental results showed the effectiveness of the system in terms of the recognition rate.
机译:在本文中,我们描述了一个定量模型,该模型考虑了视皮层腹侧流的电路和前馈路径的计算。该模型与视觉处理的一般理论相一致,该理论将层次模型从主视觉区域扩展到超视觉区域。我们实施了改进的HMAX方法,该方法具有从C1层到S2层的学习能力,并且为了优化S2层的特征,我们应用了两种聚类方法,例如K均值和顺序后向特征选择。特征提取后,我们使用K最近邻(KNN)和支持向量机(SVM)作为分类器。实验结果表明,在学习阶段应用顺序向后特征选择可获得较高的识别率。利用ORL数据库来测试我们的方法。实验结果表明了该系统在识别率方面的有效性。

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